Leininger Lindsey J, Saloner Brendan, Wherry Laura R
*Mathematica Policy Research, Chicago, IL †Department of Health Policy and Management, Johns Hopkins School of Public Health, Baltimore, MD ‡Division of General Internal Medicine and Health Services Research, David Geffen School of Medicine at the University of California, Los Angeles, CA.
Med Care. 2015 Aug;53(8):729-35. doi: 10.1097/MLR.0000000000000391.
Health care administrators often lack feasible methods to prospectively identify new pediatric patients with high health care needs, precluding the ability to proactively target appropriate population health management programs to these children.
To develop and validate a predictive model identifying high-cost pediatric patients using parent-reported health (PRH) measures that can be easily collected in clinical and administrative settings.
Retrospective cohort study using 2-year panel data from the 2001 to 2011 rounds of the Medical Expenditure Panel Survey.
A total of 24,163 children aged 5-17 with family incomes below 400% of the federal poverty line were included in this study.
Predictive performance, including the c-statistic, sensitivity, specificity, and predictive values, of multivariate logistic regression models predicting top-decile health care expenditures over a 1-year period.
Seven independent domains of PRH measures were tested for predictive capacity relative to basic sociodemographic information: the Children with Special Health Care Needs (CSHCN) Screener; subjectively rated health status; prior year health care utilization; behavioral problems; asthma diagnosis; access to health care; and parental health status and access to care. The CSHCN screener and prior year utilization domains exhibited the highest incremental predictive gains over the baseline model. A model including sociodemographic characteristics, the CSHCN screener, and prior year utilization had a c-statistic of 0.73 (95% confidence interval, 0.70-0.74), surpassing the commonly used threshold to establish sufficient predictive capacity (c-statistic>0.70).
The proposed prediction tool, comprising a simple series of PRH measures, accurately stratifies pediatric populations by their risk of incurring high health care costs.
医疗保健管理人员往往缺乏前瞻性识别有高医疗需求的新儿科患者的可行方法,从而无法主动针对这些儿童开展适当的人群健康管理项目。
开发并验证一种预测模型,该模型使用可在临床和管理环境中轻松收集的家长报告健康(PRH)指标来识别高成本儿科患者。
回顾性队列研究,使用2001年至2011年各轮医疗支出面板调查的两年面板数据。
本研究共纳入24163名年龄在5至17岁、家庭收入低于联邦贫困线400%的儿童。
预测性能,包括多变量逻辑回归模型预测一年期最高十分之一医疗保健支出的c统计量、敏感性、特异性和预测值。
相对于基本社会人口统计学信息,对PRH指标的七个独立领域进行了预测能力测试:特殊医疗保健需求儿童(CSHCN)筛查工具;主观评定的健康状况;上一年的医疗保健利用率;行为问题;哮喘诊断;获得医疗保健的机会;以及父母的健康状况和获得医疗保健的机会。CSHCN筛查工具和上一年利用率领域在基线模型上表现出最高的增量预测增益。一个包括社会人口统计学特征、CSHCN筛查工具和上一年利用率的模型的c统计量为0.73(95%置信区间,0.70 - 0.74),超过了用于确定足够预测能力的常用阈值(c统计量>0.70)。
所提出的预测工具由一系列简单的PRH指标组成,能够准确地根据儿科人群产生高医疗成本的风险进行分层。